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arXiv 提交日期: 2026-01-09
📄 Abstract - FlyPose: Towards Robust Human Pose Estimation From Aerial Views

Unmanned Aerial Vehicles (UAVs) are increasingly deployed in close proximity to humans for applications such as parcel delivery, traffic monitoring, disaster response and infrastructure inspections. Ensuring safe and reliable operation in these human-populated environments demands accurate perception of human poses and actions from an aerial viewpoint. This perspective challenges existing methods with low resolution, steep viewing angles and (self-)occlusion, especially if the application demands realtime feasibile models. We train and deploy FlyPose, a lightweight top-down human pose estimation pipeline for aerial imagery. Through multi-dataset training, we achieve an average improvement of 6.8 mAP in person detection across the test-sets of Manipal-UAV, VisDrone, HIT-UAV as well as our custom dataset. For 2D human pose estimation we report an improvement of 16.3 mAP on the challenging UAV-Human dataset. FlyPose runs with an inference latency of ~20 milliseconds including preprocessing on a Jetson Orin AGX Developer Kit and is deployed onboard a quadrotor UAV during flight experiments. We also publish FlyPose-104, a small but challenging aerial human pose estimation dataset, that includes manual annotations from difficult aerial perspectives: this https URL.

顶级标签: computer vision robotics model evaluation
详细标签: human pose estimation aerial imagery uav lightweight model dataset 或 搜索:

FlyPose:面向无人机视角的鲁棒人体姿态估计 / FlyPose: Towards Robust Human Pose Estimation From Aerial Views


1️⃣ 一句话总结

这篇论文提出了一个名为FlyPose的轻量级系统,专门用于从无人机拍摄的俯视角度准确、快速地识别人体姿态,以提升无人机在人群环境中的安全性和应用能力,并发布了一个新的高难度数据集。

源自 arXiv: 2601.05747